A Study of Sabermetrics in Major League Baseball: The Impact of Moneyball on Free Agent Salaries Jason Chang & Joshua Zenilman1 Honors in Management Advisor: Kelly Bishop Washington University in St. Louis April 19, 2013 Abstract Using contract and player statistic data for Major League Baseball free agents, this paper estimates the relative effects of player attributes on player salaries over different periods of time. Moneyball is the analytical, evidence-based approach to baseball, utilizing various statistics as an indicator of player performance. Estimating a hedonic pricing model, our results show a lasting impact of Moneyball in shifting the emphasis on player valuation from observable traits to more advanced statistical analysis. 1 We would like to thank Kelly Bishop for her efforts in guiding us through the research process serving as our advisor, as well as to Seethu Seetharaman, Mark Leary, and William Bottom during the Honors in Management lecture portion of the class at Olin Business School at Washington University in St. Louis. 1. Introduction Traditionally in Major League Baseball (MLB), a baseball player’s relative worth was gauged according to recent successes such as his batting average and number of strikeouts, and the qualitative opinions of scouts, who have seen these players in action (Lewis 2003). During the 2002 season, a cash-strapped Oakland Athletics team, led by general manager Billy Beane argued that current player valuation was highly inaccurate and inefficient, and that the use of new “analytical gauges” of player performance were more telling of player contribution, effectively unleashing hidden value from overlooked players – hence the introduction of Moneyball to the game of baseball. As a result, sabermetrics, the specialized analysis of baseball through objective evidence, has been accepted into the game and continues to impact different aspects of player valuation through its continual evolution and search for other undervalued traits in order to more accurately measure a player’s relative worth. Ever since Moneyball was first popularized in the early 2000s, sabermetrics, the “search for objective knowledge about baseball” (Grabiner, 1994), has continuously evolved as more advanced statistical metrics were developed to better evaluate individual player contribution to team wins. Previously overlooked statistics such as on-base percentage (OBP), which takes the number of times a batter reaches base (regardless of how) over the number of plate appearances, has now become a commonplace metric. Given the popularization of Moneyball and the claims of unleashed hidden value resulting from pricing mismatches in the MLB, we aim to determine if the use of sabermetrics has impacted free-agent player salaries by comparing data from the era before Moneyball, after Moneyball (post), and in the most recent period available (post post). Through running the 2 regression model for each respective time period, we are able to account for the time lag in the adjustment of prices. Utilizing Rosen’s (1974) hedonic model as a revealed preference method of estimating true value for various player statistics, we believe a player can be reduced to various characteristics and traits that the market of MLB teams value. This also allows us to take into consideration the possibilities of multiple interactions between various player traits. 1.1 Major League Baseball as a Market for Player Salaries In the MLB, the season structure is broken down into spring training, the regular season, and the postseason. Spring training serves as a series of practices and exhibition games that do not impact the overall win/loss record, while allowing new players to audition for roster spots. During the 162 game regular season, teams compete for one of the five playoff spots in their respective leagues (American or National) and can do this through winning their division or capturing a wild card spot. During the postseason, teams compete through four rounds of series in order to win the title of World Series Champion, the goal of every team. Franchises attempt to do this by surrounding their teams with the best facilities, coaches, and fans, but most importantly, by assembling the optimal player roster on their team. Price theory suggests that in an environment with perfect market information and competition, there should be a strong correlation between player attributes and pay. The market for players in The MLB is an example of this, as player statistics have been tracked since the early 1900s and counting various metrics has been a major part of the game (Depken 1999), while salary data is much more transparent than for comparable information of workers in an office setting (Kahn 1993). In the MLB, free agents are not bound by an existing contract and after a minimum experience requirement of six years, can market their services to other teams 3 (Dworkin 1981, Scully 1989) and this allows for a significant amount of freedom for players to move to other teams. 1.2 Previous Economic Analyses of the Moneyball Hypothesis Hakes and Sauer’s (2006) study contests the claim that Lewis (2003) brought forth with his Moneyball hypothesis at the individual team level. They proposed that an efficient labor market for players would reward on-base percentage (OBP) and slugging percentage (SLG) in the same proportions that those statistics contribute to winning, which in turn drives team revenue, which are in turn, funneled back towards increased wages. By setting the dependent variable as the logarithm of annual salary on the aforementioned statistics, they were able to confirm that OBP and SLG were undervalued at the beginning of the 2000s in the MLB as it pertained to salary from a revenue maximization standpoint. However, this does not account for the possibility that fans prefer watching home runs rather than walks and scoring runs through “small ball” therefore increasing willingness to pay while disregarding win percentage. Beneventano, Berger, and Weinberg (2012) conducted a similar study using stepwise multiple regression models analyzing the specific impact of sabermetric statistics on offensive run production, as well as defensive run saving measures (incorporating pitching as well as fielding statistics) on a team level. Their final model focused only on the production of position players and combined the sabermetric stats of weighted on-base average (wOBA) and strikeout percent with the traditional stats of slugging percentage and on-base percentage and resulted in a of 95.3% for the number of runs scored. However, they were not able to completely confirm 2 the푅 original contention of the paper, as the sabermetric variables did not dominate the explanation power in the variation of the final model’s independent variable. 4 2. Data An important decision was choosing the appropriate seasons that would enable a comparison of the pre-Moneyball, post-Moneyball, and post post-Moneyball periods during a timespan in which the game of baseball did not change too drastically. Therefore we selected the free agent signings for the 2001, 2005, and 2011 seasons. 2001 represents the last year prior to the introduction of Moneyball in 2002 - the pre-Moneyball period; 2005 was selected to reflect the successful implementation and adoption of the theory in the MLB - the post-Moneyball period2; and the most recent era from 2011, highlighting the continued emphasis on quantitative analysis - the post post-Moneyball period. All productivity variables are calculated based on performance in the prior year, because salary is determined prior to performance as a function of expected productivity given observed performance in previous years (Hakes & Sauer 2006). As mentioned previously, MLB statistics are readily available through a number of databases. We selected two primary sources of data: one regarding player statistics and another for player contracts. Because the sources use the same unique player identification code, we are able to merge the player contract data with the player statistics data using Stata. The data and descriptive statistics are outlined below. 2 The Boston Red Sox won the 2004 World Series and attributed their success largely to the hiring of various sabermetricians and statistical analysts 5 2.1 Key Metrics Explained Contract Length Players and teams can agree to contracts of any length and value above the league minimum of one year and the lower bounds on values that change each season without any upper limits. Players strive to secure long-term contracts to secure their long-term financial security. Teams, on the other hand, would rather commit to smaller sums of shorter length to maintain future financial flexibility and avoid being locked into a large contract of an underperforming player. Thus, the players who are successfully able to secure a long-term contract are those with above-average-to-great recent performance with teams that have the financial backing to commit to such an agreement. Players who were previously above-average with recent struggles in performance or injuries, as well as players who are merely average or below average players, with the potential for future development typically sign shorter contracts. They understand the teams’ lack of willingness to take a large risk and therefore, are willing to accept these contracts in order to establish themselves as a stable producer in the long run. As a result, these players typically accept the instability associated with a higher priced short-term contract, rather than being locked into a long-term contract in which they would feel underpaid. Teams are reluctant to guarantee one of the 25 major league roster spots to a severely underperforming player and have the option to offer these players minor league contracts attached with an invitation to the major league team’s spring training. There remains the potential for these players to make the major league roster, in the future, without any guarantee. 6 Height In our dataset, player height is measured in inches.
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